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I have seen & used nested functions in Python. They match the definition of a closure.

It is not closure simply because it is not used by external world?

UPDATE: I was reading about closures & it got me thinking about this concept with respect to Python. A little bit of search got me to the article someone in the comments pointed to. But I couldn't completely understand the explanation there. I thought about asking the experts here. So there...

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5  
Interestingly, some googling found me this, dated December 2006: effbot.org/zone/closure.htm. I'm not sure—are "external duplicates" frowned upon on SO? –  htw Oct 26 '10 at 3:22
    
PEP 227 -- Statically Nested Scopes for more information. –  Honest Abe Jan 12 at 8:19

5 Answers 5

up vote 122 down vote accepted

A closure occurs when a function has access to a local variable from an enclosing scope that has finished its execution.

def make_printer(msg):
    def printer():
        print msg
    return printer

printer = make_printer('Foo!')
printer()

When make_printer is called, a new frame is put on the stack with the compiled code for the printer function as a constant and the value of msg as a local. It then creates and returns the function. Because the function printer references the msg variable, it is kept alive after the make_printer function has returned.

So, if your nested functions don't

  1. access variables that are local to enclosing scopes,
  2. do so when they are executed outside of that scope,

then they are not closures.

Here's an example of a nested function which is not a closure.

def make_printer(msg):
    def printer(msg=msg):
        print msg
    return printer

printer = make_printer("Foo!")
printer()  #Output: Foo!

Here, we are binding the value to the default value of a parameter. This occurs when the function printer is created and so no reference to the value of msg external to printer needs to be maintained after make_printer returns. msg is just a normal local variable of the function printer in this context.

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You answer is much better than mine, you make a good point, but If we are going to go by the strictest functional programming definitions, are your examples even functions? It's been a while, and I can't remember if strict functional programming allows for functions that don't return values. The point is moot, if you consider the return value to be None, but that is a whole other topic. –  mikerobi Oct 26 '10 at 4:08
    
@mikerobi, I'm not sure that we need to take functional programming into account since python isn't really a functional language although it certainly can be used as such. But, no, the inner functions are not functions in that sense since their whole point is to create side effects. It's easy to create a function that illustrates the points just as well though, –  aaronasterling Oct 26 '10 at 4:26
5  
@mikerobi: Whether or not a blob of code is a closure depends on whether or not it closes over its environment, not what you call it. It could be a routine, function, procedure, method, block, subroutine, whatever. In Ruby, methods can't be closures, only blocks can. In Java, methods can't be closures, but classes can. That doesn't make them any less of a closure. (Although the fact that they only close over some variables, and they cannot modify them, makes them next to useless.) You could argue that a method is just a procedure closed over self. (In JavaScript/Python that's almost true.) –  Jörg W Mittag Oct 26 '10 at 12:39
    
@Jörg W Mittag, your a little late to the conversation. I had raised the point in my original answer that the reason for the OP confusion is mainly terminology. Aaron, criticized my answer for calling python functions closures, since you can create a function that isn't closed on any variables. He was right and I removed my answer. My comment about the definition of functions isn't really material to the discussion. –  mikerobi Oct 26 '10 at 13:33

The question has already been answered by aaronasterling

However, someone might be interested in how the variables are stored under the hood.

Before coming to the snippet:

Closures are functions that inherit variables from their enclosing environment. When you pass a function callback as an argument to another function that will do I/O, this callback function will be invoked later, and this function will — almost magically — remember the context in which it was declared, along with all the variables available in that context.

  • If a function does not use free variables it doesn't form a closure.

  • If there is another inner level which uses free variables -- all previous levels save the lexical environment ( example at the end )

  • function attributes func_closure in python < 3.X or __closure__ in python > 3.X save the free variables.

  • Every function in python has this closure attributes, but it doesn't save any content if there is no free variables.

example: of closure attributes but no content inside as there is no free variable.

>>> def foo():
...     def fii():
...         pass
...     return fii
...
>>> f = foo()
>>> f.func_closure
>>> 'func_closure' in dir(f)
True
>>>

NB: FREE VARIABLE IS MUST TO CREATE A CLOSURE.

I will explain using the same snippet as above:

>>> def make_printer(msg):
...     def printer():
...         print msg
...     return printer
...
>>> printer = make_printer('Foo!')
>>> printer()  #Output: Foo!

And all Python functions have a closure attribute so let's examine the enclosing variables associated with a closure function.

Here is the attribute func_closure for the function printer

>>> 'func_closure' in dir(printer)
True
>>> printer.func_closure
(<cell at 0x108154c90: str object at 0x108151de0>,)
>>>

The closure attribute returns a tuple of cell objects which contain details of the variables defined in the enclosing scope.

The first element in the func_closure which could be None or a tuple of cells that contain bindings for the function’s free variables and it is read-only.

>>> dir(printer.func_closure[0])
['__class__', '__cmp__', '__delattr__', '__doc__', '__format__', '__getattribute__',
 '__hash__', '__init__', '__new__', '__reduce__', '__reduce_ex__', '__repr__', 
 '__setattr__',  '__sizeof__', '__str__', '__subclasshook__', 'cell_contents']
>>>

Here in the above output you can see cell_contents, let's see what it stores:

>>> printer.func_closure[0].cell_contents
'Foo!'    
>>> type(printer.func_closure[0].cell_contents)
<type 'str'>
>>>

So, when we called the function printer(), it accesses the value stored inside the cell_contents. This is how we got the output as 'Foo!'

Again I will explain using the above snippet with some changes:

 >>> def make_printer(msg):
 ...     def printer():
 ...         pass
 ...     return printer
 ...
 >>> printer = make_printer('Foo!')
 >>> printer.func_closure
 >>>

In the above snippet, I din't print msg inside the printer function, so it doesn't create any free variable. As there is no free variable, there will be no content inside the closure. Thats exactly what we see above.

Now I will explain another different snippet to clear out everything Free Variable with Closure:

>>> def outer(x):
...     def intermediate(y):
...         free = 'free'
...         def inner(z):
...             return '%s %s %s %s' %  (x, y, free, z)
...         return inner
...     return intermediate
...
>>> outer('I')('am')('variable')
'I am free variable'
>>>
>>> inter = outer('I')
>>> inter.func_closure
(<cell at 0x10c989130: str object at 0x10c831b98>,)
>>> inter.func_closure[0].cell_contents
'I'
>>> inn = inter('am')

So, we see that a func_closure property is a tuple of closure cells, we can refer them and their contents explicitly -- a cell has property "cell_contents"

>>> inn.func_closure
(<cell at 0x10c9807c0: str object at 0x10c9b0990>, 
 <cell at 0x10c980f68: str object at   0x10c9eaf30>, 
 <cell at 0x10c989130: str object at 0x10c831b98>)
>>> for i in inn.func_closure:
...     print i.cell_contents
...
free
am 
I
>>>

Here when we called inn, it will refer all the save free variables so we get I am free variable

>>> inn('variable')
'I am free variable'
>>>
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3  
In Python 3, func_closure is now called __closure__, similarly to the various other func_* attributes. –  lvc Jan 3 at 6:53
    
Thank you for the correction. –  sapam Jan 3 at 6:54
    
Also __closure_ is available in Python 2.6+ for compatibility with Python 3. –  Peter Apr 21 at 10:27

Python has a weak support for closure. To see what I mean take the following example of a counter using closure with JavaScript:

function initCounter(){
    var x = 0;
    function counter  () {
        x += 1;
        console.log(x);
    };
    return counter;
}

count = initCounter();

count(); //Prints 1
count(); //Prints 2
count(); //Prints 3

Closure is quite elegant since it gives functions written like this the ability to have "internal memory". As of Python 2.7 this is not possible. If you try

def initCounter():
    x = 0;
    def counter ():
        x += 1 ##Error, x not defined
        print x
    return counter

count = initCounter();

count(); ##Error
count();
count();

You'll get an error saying that x is not defined. But how can that be if it has been shown by others that you can print it? This is because of how Python it manages the functions variable scope. While the inner function can read the outer function's variables, it cannot write them.

This is a shame really. But with just read-only closure you can at least implement the function decorator pattern for which Python offers syntactic sugar.

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5  
There are ways around this. In Python2, you could make x = [0] in the outer scope, and use x[0] += 1 in the inner scope. In Python3, you could keep your code as it is and use the nonlocal keyword. –  unutbu May 9 at 10:26
def nested1(num1): 
    print "nested1 has",num1
        def nested2(num2):
            print "nested2 has",num2,"and it can reach to",num1
            return num1+num2
    return nested2

Gives:

In [17]: my_func=nested1(8)
nested1 has 8

In [21]: my_func(5)
nested2 has 5 and it can reach to 8
Out[21]: 13

This example would give a clear idea of what closure is and how it can be used. It's important to know, even if you don't need to use it, because they can ask this in a job-interview.

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I had a situation where I needed a separate but persistent name space. I used classes. I don't otherwise. Segregated but persistent names are closures.

>>> class f2:
...     def __init__(self):
...         self.a = 0
...     def __call__(self, arg):
...         self.a += arg
...         return(self.a)
...
>>> f=f2()
>>> f(2)
2
>>> f(2)
4
>>> f(4)
8
>>> f(8)
16

# **OR**
>>> f=f2() # **re-initialize**
>>> f(f(f(f(2)))) # **nested**
16

# handy in list comprehensions to accumulate values
>>> [f(i) for f in [f2()] for i in [2,2,4,8]][-1] 
16
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+1 for originality. –  Skylar Saveland Jul 30 at 23:48

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